Date/Time
Thursday
13 Mar 2025
5:00 pm - 6:00 pm
Location
188 Dwinelle Hall
Event Type
Non-CSTMS Event
Dr. Offert
Assistant Professor, University of California, Santa Barbara
The capability of neural networks to generate texts and images by learning from large amounts of data is often framed as both the most significant contribution and the most obvious flaw of contemporary artificial intelligence research. Much critical work thus starts from a reading of training datasets – but the mapping from training data to trained model is always messy and indirect. Bias is not just a question of what is represented but also of the logic of representation itself, of the peculiar ways of knowing that emerge from training neural networks on unprecedented amounts of multimodal data.
Vector Media considers the ideological charge of these peculiar ways of knowing and thus writes a new historical epistemology of generative artificial intelligence. It reframes artificial intelligence systems as determined by a central, overarching paradigm: that the production of new knowledge can be operationalized as a geometric interpolation between fragments of existing knowledge. Vector
Following a trail of newly uncovered ideas about neural representation in the technical literature, from early attempts to model the human visual cortex to contemporary multimodal foundation models, Vector Media reconstru
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